Entanglement Classification of Arbitrary Three-Qubit States via Artificial Neural Networks
- URL: http://arxiv.org/abs/2411.11330v1
- Date: Mon, 18 Nov 2024 06:50:10 GMT
- Title: Entanglement Classification of Arbitrary Three-Qubit States via Artificial Neural Networks
- Authors: Jorawar Singh, Vaishali Gulati, Kavita Dorai, Arvind,
- Abstract summary: We design and implement artificial neural networks (ANNs) to detect and classify entanglement for three-qubit systems.
The models are trained and validated on a simulated dataset of randomly generated states.
Remarkably, we find that feeding only 7 diagonal elements of the density matrix into the ANN results in an accuracy greater than 94% for both tasks.
- Score: 2.715284063484557
- License:
- Abstract: We design and successfully implement artificial neural networks (ANNs) to detect and classify entanglement for three-qubit systems using limited state features. The overall design principle is a feed forward neural network (FFNN), with the output layer consisting of a single neuron for the detection of genuine multipartite entanglement (GME) and six neurons for the classification problem corresponding to six entanglement classes under stochastic local operations and classical communication (SLOCC). The models are trained and validated on a simulated dataset of randomly generated states. We achieve high accuracy, around 98%, for detecting GME as well as for SLOCC classification. Remarkably, we find that feeding only 7 diagonal elements of the density matrix into the ANN results in an accuracy greater than 94% for both the tasks, showcasing the strength of the method in reducing the required input data while maintaining efficient performance. Reducing the feature set makes it easier to apply ANN models for entanglement classification, particularly in resource-constrained environments, without sacrificing accuracy. The performance of the ANN models was further evaluated by introducing white noise into the data set, and the results indicate that the models are robust and are able to well tolerate noise.
Related papers
- ANN-Enhanced Detection of Multipartite Entanglement in a Three-Qubit NMR Quantum Processor [2.715284063484557]
We use an artificial neural network (ANN) model to identify the entanglement class of an experimentally generated three-qubit pure state.
The ANN model is also able to detect the presence of genuinely multipartite entanglement (GME) in the state.
arXiv Detail & Related papers (2024-09-29T15:34:11Z) - Unveiling the Power of Sparse Neural Networks for Feature Selection [60.50319755984697]
Sparse Neural Networks (SNNs) have emerged as powerful tools for efficient feature selection.
We show that SNNs trained with dynamic sparse training (DST) algorithms can achieve, on average, more than $50%$ memory and $55%$ FLOPs reduction.
Our findings show that feature selection with SNNs trained with DST algorithms can achieve, on average, more than $50%$ memory and $55%$ FLOPs reduction.
arXiv Detail & Related papers (2024-08-08T16:48:33Z) - DCNN: Dual Cross-current Neural Networks Realized Using An Interactive Deep Learning Discriminator for Fine-grained Objects [48.65846477275723]
This study proposes novel dual-current neural networks (DCNN) to improve the accuracy of fine-grained image classification.
The main novel design features for constructing a weakly supervised learning backbone model DCNN include (a) extracting heterogeneous data, (b) keeping the feature map resolution unchanged, (c) expanding the receptive field, and (d) fusing global representations and local features.
arXiv Detail & Related papers (2024-05-07T07:51:28Z) - 3D-CLMI: A Motor Imagery EEG Classification Model via Fusion of 3D-CNN
and LSTM with Attention [0.174048653626208]
This paper proposed a model that combined a three-dimensional convolutional neural network (CNN) with a long short-term memory (LSTM) network to classify motor imagery (MI) signals.
Experimental results showed that this model achieved a classification accuracy of 92.7% and an F1-score of 0.91 on the public dataset BCI Competition IV dataset 2a.
The model greatly improved the classification accuracy of users' motor imagery intentions, giving brain-computer interfaces better application prospects in emerging fields such as autonomous vehicles and medical rehabilitation.
arXiv Detail & Related papers (2023-12-20T03:38:24Z) - A model for multi-attack classification to improve intrusion detection
performance using deep learning approaches [0.0]
The objective here is to create a reliable intrusion detection mechanism to help identify malicious attacks.
Deep learning based solution framework is developed consisting of three approaches.
The first approach is Long-Short Term Memory Recurrent Neural Network (LSTM-RNN) with seven functions such as adamax, SGD, adagrad, adam, RMSprop, nadam and adadelta.
The models self-learnt the features and classifies the attack classes as multi-attack classification.
arXiv Detail & Related papers (2023-10-25T05:38:44Z) - An Automata-Theoretic Approach to Synthesizing Binarized Neural Networks [13.271286153792058]
Quantized neural networks (QNNs) have been developed, with binarized neural networks (BNNs) restricted to binary values as a special case.
This paper presents an automata-theoretic approach to synthesizing BNNs that meet designated properties.
arXiv Detail & Related papers (2023-07-29T06:27:28Z) - How neural networks learn to classify chaotic time series [77.34726150561087]
We study the inner workings of neural networks trained to classify regular-versus-chaotic time series.
We find that the relation between input periodicity and activation periodicity is key for the performance of LKCNN models.
arXiv Detail & Related papers (2023-06-04T08:53:27Z) - Benign Overfitting in Deep Neural Networks under Lazy Training [72.28294823115502]
We show that when the data distribution is well-separated, DNNs can achieve Bayes-optimal test error for classification.
Our results indicate that interpolating with smoother functions leads to better generalization.
arXiv Detail & Related papers (2023-05-30T19:37:44Z) - Batch-Ensemble Stochastic Neural Networks for Out-of-Distribution
Detection [55.028065567756066]
Out-of-distribution (OOD) detection has recently received much attention from the machine learning community due to its importance in deploying machine learning models in real-world applications.
In this paper we propose an uncertainty quantification approach by modelling the distribution of features.
We incorporate an efficient ensemble mechanism, namely batch-ensemble, to construct the batch-ensemble neural networks (BE-SNNs) and overcome the feature collapse problem.
We show that BE-SNNs yield superior performance on several OOD benchmarks, such as the Two-Moons dataset, the FashionMNIST vs MNIST dataset, FashionM
arXiv Detail & Related papers (2022-06-26T16:00:22Z) - ANNETTE: Accurate Neural Network Execution Time Estimation with Stacked
Models [56.21470608621633]
We propose a time estimation framework to decouple the architectural search from the target hardware.
The proposed methodology extracts a set of models from micro- kernel and multi-layer benchmarks and generates a stacked model for mapping and network execution time estimation.
We compare estimation accuracy and fidelity of the generated mixed models, statistical models with the roofline model, and a refined roofline model for evaluation.
arXiv Detail & Related papers (2021-05-07T11:39:05Z) - Ensembles of Spiking Neural Networks [0.3007949058551534]
This paper demonstrates how to construct ensembles of spiking neural networks producing state-of-the-art results.
We achieve classification accuracies of 98.71%, 100.0%, and 99.09%, on the MNIST, NMNIST and DVS Gesture datasets respectively.
We formalize spiking neural networks as GLM predictors, identifying a suitable representation for their target domain.
arXiv Detail & Related papers (2020-10-15T17:45:18Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.